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Optimized assignment patterns in Mobile Edge Cloud networks

机译:Mobile Edge Cloud网络中的优化分配模式

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Given an existing Mobile Edge Cloud (MEC) network including virtualization facilities of limited capacity, and a set of mobile Access Points (AP) whose data traffic demand changes over time, we aim at finding plans for assigning APs traffic to MEC facilities so that the demand of each AP is satisfied and MEC facility capacities are not exceeded, yielding high level of service to the users. Since demands are dynamic we allow each AP to be assigned to different MEC facilities at different points in time, accounting for suitable switching costs. We propose a general data-driven framework for our application including an optimization core, a data pre-processing module, and a validation module to test plans accuracy. Our optimization core entails a combinatorial problem that is a multi-period variant of the Generalized Assignment Problem: we design a Branch-and-Price algorithm that, although exact in nature,. performs well also as a matheuristics when combined with early stopping. Extensive experiments on both synthetic and real-world datasets demonstrate that our approach is both computationally effective and accurate when employed for prescriptive analytics. (C) 2018 Elsevier Ltd. All rights reserved.
机译:鉴于现有的移动边缘云(MEC)网络包括容量有限的虚拟化设施,以及一组其数据流量需求随时间变化的移动接入点(AP),我们旨在寻找将AP流量分配给MEC设施的计划,以便满足每个AP的需求,并且不超过MEC设施的容量,从而为用户提供高水平的服务。由于需求是动态的,因此我们允许将每个AP在不同的时间点分配给不同的MEC设备,并考虑适当的交换成本。我们为应用程序提出了一个通用的数据驱动框架,包括优化核心,数据预处理模块和验证模块以测试计划的准确性。我们的优化核心包含一个组合问题,它是广义分配问题的多个时期的变体:我们设计了“分价”算法,尽管该算法本质上是精确的。与早期停止结合使用时,在数学方面也表现出色。在合成数据集和真实数据集上进行的大量实验表明,当用于规范分析时,我们的方法在计算上既有效又准确。 (C)2018 Elsevier Ltd.保留所有权利。

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